mcp-knowledge-assistant
A custom MCP server providing semantic note memory (Qdrant + FastEmbed) and optional web search (Tavily) tools for a LangGraph ReAct agent.
README
Project 3 — Custom MCP Server + LangGraph Agent (Fully-Free Stack)
A personal knowledge assistant built on the Model Context Protocol (MCP). A custom FastMCP server exposes tools (semantic note memory + web search); a LangGraph ReAct agent discovers and calls those tools over HTTP.
User Query -> LangGraph Agent -> MultiServerMCPClient -> MCP Server (FastMCP)
|-- Qdrant (notes) + FastEmbed (local)
|-- Tavily (web)
Free stack (no paid keys)
| Concern | Original | This setup (free) |
|---|---|---|
| Embeddings | OpenAI | FastEmbed BAAI/bge-small-en-v1.5 (local, no key) |
| Agent LLM | Anthropic Claude | OpenRouter free model (one free key) |
| Web search | Tavily | Tavily (free tier, optional) |
| Vector store | Qdrant (Docker) | Qdrant (Docker) |
The note-memory tools (add_note, list_notes, search_notes) need no API
key at all — embeddings run locally. Only the agent's LLM needs a (free)
OpenRouter key.
Status on this machine
| Component | Status |
|---|---|
| venv + dependencies | installed (venv/) |
| Qdrant (Docker, :6333) | running |
| MCP server (:8001) | running |
| Memory pipeline (no keys) | VERIFIED via test_memory.py |
| Agent wiring | VERIFIED via test_connection.py |
| Full agent run | needs OPENROUTER_API_KEY in .env |
1. Add your free OpenRouter key
Get one at https://openrouter.ai/keys, then put it in .env:
OPENROUTER_API_KEY=sk-or-...
# OPENROUTER_MODEL=meta-llama/llama-3.3-70b-instruct:free # optional override
TAVILY_API_KEY= # optional web search
The agent is a tool-calling ReAct agent, so the OpenRouter model must support function/tool calling. Good free options:
meta-llama/llama-3.3-70b-instruct:free,qwen/qwen-2.5-72b-instruct,deepseek/deepseek-chat. If a model ignores tools, switchOPENROUTER_MODEL.
2. Start the MCP server (own terminal)
venv/Scripts/python mcp_server.py
Serves MCP at http://localhost:8001/mcp.
3. Verify without keys (optional)
venv/Scripts/python test_connection.py # tool discovery + list_notes
venv/Scripts/python test_memory.py # add -> list -> semantic search
4. Run the agent (needs OpenRouter key)
venv/Scripts/python mcp_agent.py "Save a note titled 'RAG Tips': Always use hybrid search"
venv/Scripts/python mcp_agent.py "What did I learn about retrieval?"
venv/Scripts/python mcp_agent.py "What notes do I have?"
venv/Scripts/python mcp_agent.py "Search the web for news about LangGraph 2026" # needs Tavily
Compatibility fixes applied vs. the original handout
The handout code targets older library versions. Updated for current releases:
- Embeddings -> local FastEmbed (
mcp_server.py). No OpenAI key;EMBED_DIMchanged 1536 -> 384 to matchbge-small-en-v1.5. - Agent LLM -> OpenRouter via
ChatOpenAI(base_url=...)(mcp_agent.py), replacinginit_chat_model("anthropic:..."). MultiServerMCPClientis not a context manager anymore (langchain-mcp-adapters0.1.0+) — instantiated directly, thenget_tools().qdrant.search()->qdrant.query_points(...).points(qdrant-client 1.12+).
Inspect the server interactively (optional)
npx @modelcontextprotocol/inspector http://localhost:8001/mcp
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